Job Closed

This listing is no longer active.

Aspire logo
Aspire

All-in-one-finance for modern businesses

SAP Replication, Data Migration Specialist

Data EngineerData EngineerOtherRemoteSeniorTeam 501-1,000Since 2018H1B SponsorCompany SiteLinkedIn

Location

Texas

Posted

103 days ago

Salary

0

Seniority

Senior

Bachelor Degree5 yrs expEnglish

Job Description

SAP Replication, Data Migration Specialist

Aspire

• Design, configure, and implement data replication between SAP HCM and other SAP systems (e.g., SuccessFactors, EC Payroll, SAP S/4HANA). • Develop and maintain integration interfaces using SAP CPI, including iFlows, adapters, and mappings. • Implement, configure, and support both BIB (Business Integration Builder) and PTP (Point to Point) replication scenarios. • Lead and execute data migration and transformation activities for legacy-to-SAP and SAP-to-SAP HCM transitions. • Lead work in collaborating with other project team members on necessary data transformations to/from SAP SuccessFactors necessary for replication and data migration scenarios. • Analyze, map, and transform data between source and target systems ensuring accuracy, consistency, and completeness. • Work with stakeholders to understand functional requirements and translate them into scalable technical solutions for the project lifecycle as related to both replications and data. • Perform data validation, testing, and quality assurance in coordination with functional teams. • Provide integration and data support during cutover, go-live, and post-production phases. • Work with other project team members to execute cutover items related to data, replications, and migration per project phase. Including project planning with the project managers. • Document integration architecture, interface designs, and migration plans. • Ensure compliance with SAP best practices, security standards, and data governance policies.

Job Requirements

  • 5+ years of experience in SAP HCM and SuccessFactors Employee Central, specializing in data replication and migration.
  • In-depth hands-on expertise in configuring Business Integration Builder (BIB) and Point-to-Point (PTP) Replication between Employee Central and SAP HCM/Payroll (ECP).
  • Strong understanding of SAP HCM data models, infotype mapping, and the replication of employee and organizational data.
  • Proven experience with SAP data migration tools and techniques (e.g., LSMW, SAP Data Services, BAPIs, IDocs) for on-premise to cloud and legacy to SAP cloud migrations.
  • Solid understanding of payroll processes and data structures within SAP landscapes.
  • Proficient in data mapping, cleansing, and transformation specifically for HCM and payroll-related data.
  • Experience with monitoring, troubleshooting, and resolving issues in data replication and migration scenarios.
  • Familiarity with SuccessFactors Integration Center, Middleware, and provisioning tools.
  • Proficient in interface monitoring and error resolution tools (CPI monitoring, SAP PI/PO, AIF, etc.).
  • Ability to document configurations and provide knowledge transfer or training to clients for ongoing data maintenance and support.
  • Excellent analytical, communication, and documentation skills.

Benefits

  • Must be located in the US

Related Categories

Related Job Pages

More Data Engineer Jobs

CVS Health logo

Data Engineer

CVS Health

Bringing our heart to every moment of your health.

Data Engineer103 days ago
OtherRemoteTeam 10,001+Since 1963H1B No Sponsor

• Responsibilities and duties not specified in the opening

California
$79.3K - $158.6K / year
Job Closed

Data Engineer

LTS

LTS, a multi-ISO/CMMI Level 3 award-winning company, delivers first-class secure software lifecycle development, IT systems integration, program management, and intelligence commun

Data Engineer103 days ago

• Design, build, and optimize distributed query solutions using Starburst Enterprise Platform (SEP) and Trino • Enable secure and governed access to data across multiple sources including cloud platforms, data lakes, and enterprise data warehouses • Implement and enhance data federation, performance tuning, and query optimization strategies • Support identity and access management (IAM) and data governance requirements in a federal environment • Develop and maintain backend services, APIs, and platform components supporting the data ecosystem • Contribute to CI/CD pipelines, observability, and platform reliability initiatives • Collaborate with product, UX, security, and infrastructure teams to deliver scalable and secure data solutions • Troubleshoot performance issues in distributed and cloud-native environments

United States
Job Closed
GenLogs logo

Data Engineer

GenLogs

The Truck Intelligence Platform

Data Engineer103 days ago
OtherRemoteTeam 51-200Since 2023H1B No Sponsor

• Build and maintain ETL/ELT pipelines using Python and SQL • Develop ingestion workflows with AWS Firehose, S3, and related services • Create and optimize dbt models, tests, and incremental logic • Tune Snowflake queries and warehouse usage for cost and performance • Operate and improve Airflow DAGs for reliable execution and monitoring • Maintain high data quality, data integrity, and pipeline SLA commitments • Bring clarity to ambiguous requirements and propose practical solutions • Build feature pipelines to support ML workflows • Support model deployment, monitoring, and automated retraining • Add data validation and quality checks across ML and analytics pipelines.

United States
GenLogs logo

Senior Data Engineer

GenLogs

The Truck Intelligence Platform

Data Engineer103 days ago
OtherRemoteTeam 51-200Since 2023H1B No Sponsor

• Build and maintain ETL/ELT pipelines using Python and SQL • Develop ingestion workflows with AWS Firehose , S3, and related services • Create and optimize dbt models, tests, and incremental logic • Tune Snowflake queries and warehouse usage for cost and performance • Operate and improve Airflow DAGs for reliable execution and monitoring • Maintain high data quality, data integrity, and pipeline SLA commitments • Bring clarity to ambiguous requirements and propose practical solutions • Lead data engineering best practices and influence architectural decisions • Drive projects independently, from definition to delivery • Collaborate with engineering, analytics, and ML teams to support shared goals • Build feature pipelines to support ML workflows • Support model deployment, monitoring, and automated retraining • Add data validation and quality checks across ML and analytics pipelines

United States